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ANALISIS KINERJA YOLO, FASTER R-CNN, DAN DETR UNTUK DETEKSI OTOMATIS ALAT PELINDUNG DIRI (APD)

Naufaldihanif, Rihan - Personal Name;

Automated monitoring of Personal Protective Equipment (PPE) is crucial for enhancing safety in high-risk environments like construction sites, yet selecting the optimal detection model requires careful evaluation of accuracy versus efficiency trade-offs. This study presents a comparative performance analysis across distinct object detection paradigms represented by YOLO (YOLOv8, YOLOv11n), Faster R-CNN, and DETR to benchmark their suitability for real-time PPE detection. However, this study moves beyond a simple technical benchmark by also proposing a logical process to transform raw model detections (e.g., 'person', 'hardhat') into actionable compliance verification information (e.g., 'Compliant'/'Non-Compliant'). Using a curated construction site safety dataset, models were evaluated based on standard accuracy metrics (including mAP@.5:.95) and efficiency measures (inference latency). Results indicate that DETR and YOLOv11n achieved the highest overall accuracy with an identical mAP@.5:.95 of 0.770, closely followed by YOLOv8 (0.763), while the YOLO family demonstrated significantly superior real-time efficiency (6-7 ms latency). Faster R-CNN recorded a lower mAP (0.703) and the highest latency. Conclusively, YOLOv11n offers the most compelling balance for the detection phase, and the proposed logical process provides a practical method for integrating this technical output into automated safety monitoring systems.


Availability
#
Central Library (Reference) T1894752025
T189475
Available but not for loan - Not for Loan
Detail Information
Series Title
-
Call Number
T1894752025
Publisher
Indralaya : Prodi Sistem Informasi, Fakultas Ilmu Komputer Universitas Sriwijaya., 2025
Collation
xiv, 71 hlm.; ilus.; tab.; 29 cm.
Language
Indonesia
ISBN/ISSN
-
Classification
005.307
Content Type
Text
Media Type
-
Carrier Type
-
Edition
-
Subject(s)
Program Aplikasi Komputer
Prodi Sistem Informasi
Specific Detail Info
-
Statement of Responsibility
MI
Other version/related

No other version available

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  • ANALISIS KINERJA YOLO, FASTER R-CNN, DAN DETR UNTUK DETEKSI OTOMATIS ALAT PELINDUNG DIRI (APD)
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